Choi Junggu, Han Sanghoon
Yonsei Graduate Program in Cognitive Science, Yonsei University, Seoul, Republic of Korea.
Department of Psychology, Yonsei University, Seoul, Republic of Korea.
Digit Health. 2023 Oct 25;9:20552076231207573. doi: 10.1177/20552076231207573. eCollection 2023 Jan-Dec.
The coronavirus disease 2019 (COVID-19) pandemic is among the most critical public health problems worldwide in the last three years. We tried to investigate changes in factors between pre- and early stages of the COVID-19 pandemic.
The data of 457,309 participants from the 2019 and 2020 Community Health Survey were examined. Four mental health-related variables were selected for examination as a dependent variable (patient health questionnaire-9, depression, stress, and sleep time). Other variables without the aforementioned four variables were split into three groups based on the coefficient values of lasso and ridge regression models. The importance of each variable was calculated and compared using feature importance values obtained from three machine learning algorithms.
Psychiatric and sociodemographic variables were identified, both during the pre- and early pandemic periods. In contrast, during the early pandemic period, average sleep time variables ranked the highest with the dependent variables regarding the experience of depression. The difference in sleep time before and after the pandemic was validated by the results of paired -tests, which were statistically significant (-value < 0.05).
Changes in the importance of mental health factors in the early pandemic period in South Korea were identified. For each mental health-dependent variable, average sleep time, experience of depression, and experience of accidents or addictions were found to be the most important factors. House type and type of residence were also found in regions with larger populations and a higher number of confirmed cases.
2019年冠状病毒病(COVID-19)大流行是过去三年全球最严重的公共卫生问题之一。我们试图调查COVID-19大流行前期和早期阶段各因素的变化。
对2019年和2020年社区健康调查中457309名参与者的数据进行了检查。选择四个与心理健康相关的变量作为因变量进行检查(患者健康问卷-9、抑郁、压力和睡眠时间)。将不包含上述四个变量的其他变量根据套索回归和岭回归模型的系数值分为三组。使用从三种机器学习算法获得的特征重要性值计算并比较每个变量的重要性。
在大流行前期和早期都识别出了精神和社会人口统计学变量。相比之下,在大流行早期,平均睡眠时间变量在与抑郁体验相关的因变量中排名最高。大流行前后睡眠时间的差异通过配对检验结果得到验证,差异具有统计学意义(P值<0.05)。
确定了韩国大流行早期心理健康因素重要性的变化。对于每个心理健康相关因变量,平均睡眠时间、抑郁体验以及事故或成瘾体验被发现是最重要的因素。在人口较多且确诊病例数较多的地区,还发现了房屋类型和居住类型。